Machine Learning Force Field Scientist
TLDR
Develop state-of-the-art ML force fields to model complex condensed-phase systems, building scalable data and tools that advance life sciences and materials discovery.
We’re seeking a Machine Learning (ML) Scientist to join us in our mission to transform the discovery of therapeutics and materials.
Schrödinger has pioneered a physics-based software platform that enables discovery of high-quality, novel molecules for drug development and materials applications more rapidly and at lower cost compared to traditional methods. The software platform is used by biopharmaceutical and industrial companies, academic institutions, and government laboratories around the world. Our multidisciplinary drug discovery team also leverages the software platform to advance collaborative programs and its own pipeline of novel therapeutics to address unmet medical needs.
As a member of our Machine Learning team, you’ll develop state-of-the-art ML force fields targeting impactful applications in Life and Materials sciences.
Who will love this job:
- An ML force fields expert who has developed, validated, and applied ML force fields to simulate complex condensed-phase systems, such as solid-liquid interfaces, reactive events in the condensed phase, or solvated biomolecules
- An innovator who’s driven to leverage technical knowledge to make a tangible impact
- A scientist with deep knowledge of both finite system and periodic DFT, as well as other electronic structure methods, and who understands the limitations and appropriate applications of these methods
- A proficient Python programmer with prior knowledge of ML toolkits such as PyTorch, Scikit-Learn, NumPy, SciPy, and Pandas
- An independent researcher who enjoys collaborating with an interdisciplinary team in a fast-paced environment
What you’ll do:
- Build and manage large data sets generated using quantum chemical methods at scale to develop predictive ML force fields
- Develop software that trains and applies ML force fields to challenging problems in life and materials sciences
- Extend the accuracy, capability and generalization of current ML force fields
- Communicate results and present ideas to the team
What you should have:
- A PhD (or extensive experience) in Chemistry, Materials Science, Engineering, Computer Science, or Physics
- A proven track record of scientific contribution and independent research
- Prior experience with development of ML force fields and/or electronic structure methods
Benefits
Equity Compensation
equity-based compensation
Flexible Work Hours
a flexible work schedule
Free Meals & Snacks
regular catered meals in the office
Health Insurance
healthcare (with dental and vision)
Pre-tax commuter benefits
Paid Parental Leave
a parental leave program
Paid Time Off
over a month of paid vacation time
Schrödinger builds advanced chemical simulation software designed for pharmaceutical, biotechnology, and materials research. Targeting scientists and researchers, their platform streamlines the discovery of novel molecules, enabling faster and more cost-effective drug development and material innovation.
- Founded
- Founded 1990
- Employees
- 500+ employees
- Industry
- Life Sciences Tools & Services
- Total raised
- $160M raised